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Diagnostic Peptide Discovery: Prioritization of Pathogen Diagnostic Markers Using Multiple Features

The availability of complete pathogen genomes has renewed interest in the development of diagnostics for infectious diseases. Synthetic peptide microarrays provide a rapid, high-throughput platform for immunological testing of potential B-cell epitopes. However, their current capacity prevent the ex...

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Autores principales: Carmona, Santiago J., Sartor, Paula A., Leguizamón, María S., Campetella, Oscar E., Agüero, Fernán
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3522711/
https://www.ncbi.nlm.nih.gov/pubmed/23272069
http://dx.doi.org/10.1371/journal.pone.0050748
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author Carmona, Santiago J.
Sartor, Paula A.
Leguizamón, María S.
Campetella, Oscar E.
Agüero, Fernán
author_facet Carmona, Santiago J.
Sartor, Paula A.
Leguizamón, María S.
Campetella, Oscar E.
Agüero, Fernán
author_sort Carmona, Santiago J.
collection PubMed
description The availability of complete pathogen genomes has renewed interest in the development of diagnostics for infectious diseases. Synthetic peptide microarrays provide a rapid, high-throughput platform for immunological testing of potential B-cell epitopes. However, their current capacity prevent the experimental screening of complete “peptidomes”. Therefore, computational approaches for prediction and/or prioritization of diagnostically relevant peptides are required. In this work we describe a computational method to assess a defined set of molecular properties for each potential diagnostic target in a reference genome. Properties such as sub-cellular localization or expression level were evaluated for the whole protein. At a higher resolution (short peptides), we assessed a set of local properties, such as repetitive motifs, disorder (structured vs natively unstructured regions), trans-membrane spans, genetic polymorphisms (conserved vs. divergent regions), predicted B-cell epitopes, and sequence similarity against human proteins and other potential cross-reacting species (e.g. other pathogens endemic in overlapping geographical locations). A scoring function based on these different features was developed, and used to rank all peptides from a large eukaryotic pathogen proteome. We applied this method to the identification of candidate diagnostic peptides in the protozoan Trypanosoma cruzi, the causative agent of Chagas disease. We measured the performance of the method by analyzing the enrichment of validated antigens in the high-scoring top of the ranking. Based on this measure, our integrative method outperformed alternative prioritizations based on individual properties (such as B-cell epitope predictors alone). Using this method we ranked [Image: see text]10 million 12-mer overlapping peptides derived from the complete T. cruzi proteome. Experimental screening of 190 high-scoring peptides allowed the identification of 37 novel epitopes with diagnostic potential, while none of the low scoring peptides showed significant reactivity. Many of the metrics employed are dependent on standard bioinformatic tools and data, so the method can be easily extended to other pathogen genomes.
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spelling pubmed-35227112012-12-27 Diagnostic Peptide Discovery: Prioritization of Pathogen Diagnostic Markers Using Multiple Features Carmona, Santiago J. Sartor, Paula A. Leguizamón, María S. Campetella, Oscar E. Agüero, Fernán PLoS One Research Article The availability of complete pathogen genomes has renewed interest in the development of diagnostics for infectious diseases. Synthetic peptide microarrays provide a rapid, high-throughput platform for immunological testing of potential B-cell epitopes. However, their current capacity prevent the experimental screening of complete “peptidomes”. Therefore, computational approaches for prediction and/or prioritization of diagnostically relevant peptides are required. In this work we describe a computational method to assess a defined set of molecular properties for each potential diagnostic target in a reference genome. Properties such as sub-cellular localization or expression level were evaluated for the whole protein. At a higher resolution (short peptides), we assessed a set of local properties, such as repetitive motifs, disorder (structured vs natively unstructured regions), trans-membrane spans, genetic polymorphisms (conserved vs. divergent regions), predicted B-cell epitopes, and sequence similarity against human proteins and other potential cross-reacting species (e.g. other pathogens endemic in overlapping geographical locations). A scoring function based on these different features was developed, and used to rank all peptides from a large eukaryotic pathogen proteome. We applied this method to the identification of candidate diagnostic peptides in the protozoan Trypanosoma cruzi, the causative agent of Chagas disease. We measured the performance of the method by analyzing the enrichment of validated antigens in the high-scoring top of the ranking. Based on this measure, our integrative method outperformed alternative prioritizations based on individual properties (such as B-cell epitope predictors alone). Using this method we ranked [Image: see text]10 million 12-mer overlapping peptides derived from the complete T. cruzi proteome. Experimental screening of 190 high-scoring peptides allowed the identification of 37 novel epitopes with diagnostic potential, while none of the low scoring peptides showed significant reactivity. Many of the metrics employed are dependent on standard bioinformatic tools and data, so the method can be easily extended to other pathogen genomes. Public Library of Science 2012-12-14 /pmc/articles/PMC3522711/ /pubmed/23272069 http://dx.doi.org/10.1371/journal.pone.0050748 Text en © 2012 Carmona et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Carmona, Santiago J.
Sartor, Paula A.
Leguizamón, María S.
Campetella, Oscar E.
Agüero, Fernán
Diagnostic Peptide Discovery: Prioritization of Pathogen Diagnostic Markers Using Multiple Features
title Diagnostic Peptide Discovery: Prioritization of Pathogen Diagnostic Markers Using Multiple Features
title_full Diagnostic Peptide Discovery: Prioritization of Pathogen Diagnostic Markers Using Multiple Features
title_fullStr Diagnostic Peptide Discovery: Prioritization of Pathogen Diagnostic Markers Using Multiple Features
title_full_unstemmed Diagnostic Peptide Discovery: Prioritization of Pathogen Diagnostic Markers Using Multiple Features
title_short Diagnostic Peptide Discovery: Prioritization of Pathogen Diagnostic Markers Using Multiple Features
title_sort diagnostic peptide discovery: prioritization of pathogen diagnostic markers using multiple features
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3522711/
https://www.ncbi.nlm.nih.gov/pubmed/23272069
http://dx.doi.org/10.1371/journal.pone.0050748
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